[HTML][HTML] Latent variable models in the era of industrial big data: Extension and beyond
A rich supply of data and innovative algorithms have made data-driven modeling a popular
technique in modern industry. Among various data-driven methods, latent variable models …
technique in modern industry. Among various data-driven methods, latent variable models …
Fault detection and diagnosis of the air handling unit via combining the feature sparse representation based dynamic SFA and the LSTM network
H Zhang, C Li, Q Wei, Y Zhang - Energy and buildings, 2022 - Elsevier
In recent years, slow feature analysis (SFA) has been successfully employed to deal with the
air handling unit (AHU) system's time-varying dynamic properties. However, since the …
air handling unit (AHU) system's time-varying dynamic properties. However, since the …
Nonstationary process monitoring for blast furnaces based on consistent trend feature analysis
H Zhang, J Shang, J Zhang… - IEEE Transactions on …, 2021 - ieeexplore.ieee.org
Blast furnaces are the most crucial equipment in ironmaking processes. Stable operation of
the blast furnace is a prerequisite for personnel safety and production efficiency. Therefore …
the blast furnace is a prerequisite for personnel safety and production efficiency. Therefore …
Laplacian regularized robust principal component analysis for process monitoring
Principal component analysis (PCA) is one of the most widely used techniques for process
monitoring. However, it is highly sensitive to sparse errors because of the assumption that …
monitoring. However, it is highly sensitive to sparse errors because of the assumption that …
An enhanced temporal algorithm-coupled optimized adaptive sparse principal component analysis methodology for fault diagnosis of chemical processes
Principal component analysis (PCA) is a classic fault diagnosis method widely used in
chemical process data modeling. However, the limitation of PCA to handle dynamic and time …
chemical process data modeling. However, the limitation of PCA to handle dynamic and time …
Structured fault information-aided canonical variate analysis model for dynamic process monitoring
Process monitoring is one of the most crucial fundamental components in industrial
processes. Traditional multivariate statistical analysis modeling only relies on data collected …
processes. Traditional multivariate statistical analysis modeling only relies on data collected …
Data-driven process monitoring using structured joint sparse canonical correlation analysis
In order to improve the performance of canonical correlation analysis (CCA) based methods
for process monitoring, this brief proposes a novel process monitoring approach using the …
for process monitoring, this brief proposes a novel process monitoring approach using the …
Process monitoring using a novel robust PCA scheme
Z Lou, Y Wang, S Lu, P Sun - Industrial & Engineering Chemistry …, 2021 - ACS Publications
Outliers may cause model deviation and then affect the monitoring performance and hence it
is a challenging problem for process monitoring. The robust principal component analysis …
is a challenging problem for process monitoring. The robust principal component analysis …
Two-step localized kernel principal component analysis based incipient fault diagnosis for nonlinear industrial processes
X Deng, P Cai, Y Cao, P Wang - Industrial & Engineering …, 2020 - ACS Publications
Kernel principal component analysis (KPCA) has been widely applied to the nonlinear
process fault diagnosis field. However, it often does not perform well in the case of incipient …
process fault diagnosis field. However, it often does not perform well in the case of incipient …
Streaming variational probabilistic principal component analysis for monitoring of nonstationary process
C Lu, J Zeng, Y Dong, X Xu - Journal of Process Control, 2024 - Elsevier
Modern industrial processes are characteristic of nonstationary and uncertainty. To address
these issues, this paper proposes a probabilistic principal component analysis based model …
these issues, this paper proposes a probabilistic principal component analysis based model …